IEEE Trans Neural Netw Learn Syst. 2015 Jan;26(1):98-112. doi: 10.1109/TNNLS.2014.2311466.
Homogeneous charge compression ignition (HCCI) is a futuristic automotive engine technology that can significantly improve fuel economy and reduce emissions. HCCI engine operation is constrained by combustion instabilities, such as knock, ringing, misfires, high-variability combustion, and so on, and it becomes important to identify the operating envelope defined by these constraints for use in engine diagnostics and controller design. HCCI combustion is dominated by complex nonlinear dynamics, and a first-principle-based dynamic modeling of the operating envelope becomes intractable. In this paper, a machine learning approach is presented to identify the stable operating envelope of HCCI combustion, by learning directly from the experimental data. Stability is defined using thresholds on combustion features obtained from engine in-cylinder pressure measurements. This paper considers instabilities arising from engine misfire and high-variability combustion. A gasoline HCCI engine is used for generating stable and unstable data observations. Owing to an imbalance in class proportions in the data set, the models are developed both based on resampling the data set (by undersampling and oversampling) and based on a cost-sensitive learning method (by overweighting the minority class relative to the majority class observations). Support vector machines (SVMs) and recently developed extreme learning machines (ELM) are utilized for developing dynamic classifiers. The results compared against linear classification methods show that cost-sensitive nonlinear ELM and SVM classification algorithms are well suited for the problem. However, the SVM envelope model requires about 80% more parameters for an accuracy improvement of 3% compared with the ELM envelope model indicating that ELM models may be computationally suitable for the engine application. The proposed modeling approach shows that HCCI engine misfires and high-variability combustion can be predicted ahead of time, given the present values of available sensor measurements, making the models suitable for engine diagnostics and control applications.
均质压燃(HCCI)是一种未来的汽车发动机技术,它可以显著提高燃油经济性并降低排放。HCCI 发动机的运行受到燃烧不稳定性的限制,例如爆震、爆燃、失火、高变化燃烧等,因此确定这些约束所定义的运行范围对于发动机诊断和控制器设计非常重要。HCCI 燃烧受复杂非线性动力学的控制,基于第一原理的运行范围动态建模变得难以处理。本文提出了一种机器学习方法,通过直接从实验数据中学习,来识别 HCCI 燃烧的稳定运行范围。稳定性是通过从发动机缸内压力测量中获得的燃烧特征的阈值来定义的。本文考虑了由于发动机失火和高变化燃烧引起的不稳定性。使用汽油 HCCI 发动机生成稳定和不稳定的数据观测值。由于数据集中类比例不平衡,模型是基于数据集的重采样(欠采样和过采样)和基于成本敏感学习方法(相对于多数类观测值对少数类进行加权)开发的。支持向量机(SVM)和最近开发的极限学习机(ELM)用于开发动态分类器。与线性分类方法的结果相比,表明成本敏感的非线性 ELM 和 SVM 分类算法非常适合该问题。然而,与 ELM 包络模型相比,SVM 包络模型的准确性提高 3%需要大约 80%更多的参数,这表明 ELM 模型在计算上可能适用于发动机应用。所提出的建模方法表明,给定现有传感器测量值的当前值,可以提前预测 HCCI 发动机失火和高变化燃烧,使模型适用于发动机诊断和控制应用。